Literature DB >> 31185963

Brazilian Longitudinal Study of Adult Health (ELSA-Brasil): socio-occupational class as an effect modifier for the relationship between adiposity measures and self-rated health.

Thaís Lopes de Oliveira1, Rosane Harter Griep2, Joanna Nery Guimarães1, Luana Giatti3, Dóra Chor1, Maria de Jesus Mendes da Fonseca4.   

Abstract

BACKGROUND: Little is known about the role of social class in the association between adiposity measures and self-rated health, and several studies have evaluated its influence as a confounder. The aim of the study is to investigate whether social class is an effect modifier in the association between adiposity measures and self-rated health in participants in the Brazilian Longitudinal Study of Adult Health (ELSA-Brasil).
METHOD: Cross-sectional design, including 6453 men and 7686 women. Body mass index (kg/m2) and waist circumference (cms) were assessed. Self-rated health was categorized as good, fair and poor. Socio-occupational class was based on the participants' occupation, education and per capita income. Multicovariate ordinal logistic model was used to evaluate the association between adiposity measures and self-rated health.
RESULTS: For women, the low and medium socio-occupational class effects were higher for those with waist circumference between 80 and 88 cm or overweight. For men, the low and medium socio-occupational class effects were higher for those with adequate waist circumference or normal body mass index.
CONCLUSIONS: Social class is an effect modifier in the association between body mass index or waist circumference and self-rated health.

Entities:  

Keywords:  Body mass index; Effect modification; Occupational social class; Self-rated health; Social stratification; Waist circumference

Mesh:

Year:  2019        PMID: 31185963      PMCID: PMC6560819          DOI: 10.1186/s12889-019-7072-y

Source DB:  PubMed          Journal:  BMC Public Health        ISSN: 1471-2458            Impact factor:   3.295


Background

Self-rated health is considered one of the most relevant indicators for health research and It has been widely used as an indicator of health conditions in different populations [1, 2]. Several studies have demonstrated that self-rated health is a good predictor of morbidity and mortality, even after controlling for risk factors such as gender, race, marital status, and education [1, 3–5]. In addition to these associations, some factors are predominant in determining poor self-rated health. Among them are advanced age, female sex, low income, low educational level, unemployment, low social class, being married, having low social capital and being obese [2, 3, 6]. Obesity is a public health concern in Brazil; which prevalence has been increasing over the years [7]. Some research has shown that high values of body mass index (BMI) and waist circumference (WC) are associated with poor self-rated health [8-10]. Moreover, social stratification has been considered a potential explanation for differences in health [11]. Social class is a determinant of health [12], and being in a more distal level has an influence on body mass index and on the perception of health. Some studies have shown that the prevalence of inadequate BMI varies according to social class, with an excess of weight being more prevalent in lower social classes [13, 14]. Other studies have noted that people of lower social class rate their own health worse [6, 14, 15]. Due to the importance of social class in BMI and self-rated health, some authors treat the social class as a confounder variable in the relationship between adiposity measures and self-rated health [3, 16]. However, it is possible that this relationship is not homogeneous in all strata of social class [6, 11, 15], suggesting that this variable may act as an effect modifier. An effect modification, also known as an interaction, can be described as “a situation in which two or more risk factors modify the effect of each other with regard to the occurrence or level of a given outcome” [17]. The investigation of the presence of interactions has important implications for public health, including important implications for prevention, for the planning of intervention and to identify the most vulnerable population groups [17, 18]. Nevertheless, the interaction is a phenomenon not often explored in the epidemiological literature [19]. Moreover, some studies have investigated interactions involving self-rated health as the main outcome [20-23], and, thus far, we have not found studies that evaluated the interaction between social class and adiposity measures in the association with self-rated health. In this way, the aim of this study was to investigate whether the social class is an effect modifier in the association between adiposity measures and self-rated health in participants from the Brazilian Longitudinal Study of Adult Health (ELSA-Brasil).

Methods

Study population

This study used baseline data (2008–2010) from ELSA-Brasil. The ELSA-Brasil is a multicentric cohort of civil servants (35–74 years) conducted at six study research centres in three regions of the country, including the Northeast, South, and Southeast. These centres are located at five federal universities and the Oswaldo Cruz Foundation [24]. The present study included 6453 men and 7686 women; participants who did not have information about weight, height or waist circumference measurements (n = 7) or did not answer the question about self-rated health (n = 4), socio-occupational class (n = 239) or other variables of interest to the study (n = 1) were excluded.

Exposure

The exposures were body mass index (kg/m2) and waist circumference (cms). A stadiometer with a 0.1 cm scale was used to measure height. Weight was measured with the participant wearing a standardized uniform using a calibrated electronic scale with a capacity of 0 to 200 kg and divisions of 50 g. Waist circumference was measured using a measuring tape at the largest abdominal perimeter between the iliac crest and the last rib [25]. All measurements were performed using standardized techniques [26]. The following cut-off points adopted for BMI classification followed the recommendations of the World Health Organization [27]: ≤ 24.9 kg/m2 for underweight and normal weight, between 25 and 29.9 kg/m2 for overweight and ≥ 30 kg/m2 for obesity. The categories of underweight (≤ 18.5 kg/m2) and normal weight were grouped due to the small number of participants who were underweight (< 1%). The WC cut-off points adopted for women were as follows: ≥ 80 cm and < 88 cm for increased risk of metabolic diseases and ≥ 88 cm for substantially increased risk. For males, the cut-off points were as follows: ≥ 94 cm and < 102 cm for increased risk of metabolic diseases and ≥ 102 cm for substantially increased risk [28].

Outcome

Self-rated health [5] was obtained using the following question: “In general, compared to people of your age, how do you consider your state of health?”; the options were “very good, good, fair, poor, or very poor”. For the analyses, the answers were categorized as good self-rated health (very good and good), fair and poor self-rated health (poor and very poor).

Effect modifier

Socio-occupational class was used as an indicator of social class. This variable was obtained from the participants’ socioeconomic status based on their described occupation, expected income (based on the level of education - average market value) and observed income [29]. Socioeconomic status was calculated as an average between observed income (economic component) and expected income (educational component). Subsequently, occupational socioeconomic status was calculated for each occupational title as the average score of the socioeconomic status of the individuals with different occupations (Fig. 1). Seven socio-occupational strata were defined based on the occupational socioeconomic status scores. These strata were divided into seven levels (upper-upper, upper-lower, upper-middle, middle-middle, middle-lower, lower-upper, and lower-lower) and ordered according to educational level and income associated with occupations. In this study, the strata were categorized as follows: high socio-occupational class (upper-upper and upper-lower), medium (upper-middle, middle-middle, middle-lower) and low (lower-upper and lower-lower).
Fig. 1

Diagram of socio-occupational class, ELSA-Brasil

Diagram of socio-occupational class, ELSA-Brasil

Covariables

Directed acyclic graph (DAG) were constructed to represent the theoretical-operational model and to understand the involvement of covariables in the relationship between adiposity measures and self-rated health. The DAG was constructed using the Dagitty tool (available at: http://www.dagitty.net/dags.html). Additionally, the DAG was used to identify the minimum set of potential confounding variables. The covariates used in the DAG were age, self-declared colour or race, education, family income per capita, functional level, socio-occupational class, and marital status. The minimum set of potential confounding variables to explain the relationship between adiposity measures and self-rated health were socio-occupational class (low, medium and high), self-declared colour or race (white, brown and black), age and marital status (married/united, single, and separated/divorced/widowed/other) (Fig. 2).
Fig. 2

Directed acyclic graph of the relationship between adiposity measures and self-rated health - ELSA-Brasil

Directed acyclic graph of the relationship between adiposity measures and self-rated health - ELSA-Brasil

Statistical analyses

Means and standard deviations, and proportions were used to describe population characteristics regarding self-rated health. Through DAG, the selected variables were analysed using multicovariate models. We estimated the crude and adjusted association measurements (Odds Ratios - OR), obtained by single and multicovariate ordinal logistic model, respectively. This type of modelling tested the multiplicative interactions by the inclusion of an interaction term in the full adjusted model (BMI or WC*socio-occupational class). The effects of interactions were also illustrated. All analyses were stratified by sex, and 95% confidence intervals were considered. The analyses were performed in the R software, version 3.5.1, library “MASS”, “epiDisplay”, “VGAM” and “effects”. The ELSA-Brasil study was approved by the research ethics committees of each of the institutions involved and all participants signed informed consent forms.

Results

The mean age was similar for both sexes. The proportions showed that women with poor self-rated health were more likely to be married/united, brown self-declared colour, medium socio-occupational class, to have obesity and waist circumference above 88 cm. Men with poor self-rated health were more likely to be married/united, white self-declared colour, low socio-occupational class, overweight and waist circumference above 102 cm (Table 1).
Table 1

Characteristics of population regarding self-rated health - ELSA-Brasil baseline (2008–10)

Self-rated health
GoodFairPoor
Female sex
 Agea51.4 (8.8)53.7 (8.9)53.9 (8.6)
 Self-declared colourb
  Black1023 (16.6)375 (27.8)47 (27)
  Brown1617 (26.2)468 (34.6)64 (36.8)
  White3521 (57.1)508 (37.6)63 (36.2)
 Marital statusb
  Married/united3328 (54)671 (49.7)81 (46.6)
  Separated/divorced/widowed/other1924 (31.2)522 (38.6)74 (42.5)
  Single909 (14.8)158 (11.7)19 (10.9)
 Socio-occupational classb
  Low1117 (18.1)459 (34)61 (35.1)
  Medium2955 (48)669 (49.5)87 (50)
  High2089 (33.9)223 (16.5)26 (14.9)
 BMIb
  Obesity1309 (21.2)517 (38.3)87 (50)
  Overweight2264 (36.7)485 (35.9)43 (24.7)
  Normal weight2588 (42)349 (25.8)44 (25.3)
 Waist circumferenceb
   ≥ 88 cm2502 (40.6)853 (63.1)121 (69.5)
   ≥ 80 cm and < 88 cm1722 [28]291 (21.5)32 (18.4)
  Adequate1937 (31.4)207 (15.3)21 (12.1)
Male sex
 Agea51.6 (9.3)53.9 (8.8)54.7 (9.7)
 Self-declared colourb
  Black691 (13.3)219 (18.8)21 (21.2)
  Brown1547 (29.8)420 (36.1)35 (35.4)
  White2953 (56.9)524 (45.1)43 (43.4)
 Marital statusb
  Married/united4249 (81.9)970 (83.4)76 (76.8)
  Separated/divorced/widowed/other653 (12.6)146 (12.6)21 (21.2)
  Single289 (5.6)47 (4)2 (2)
 Socio-occupational classb
  Low1312 (25.3)494 (42.5)46 (46.5)
  Medium1823 (35.1)409 (35.2)31 (31.3)
  High2056 (39.6)260 (22.4)22 (22.2)
 BMIb
  Obesity955 (18.4)347 (29.8)37 (37.4)
  Overweight2356 (45.4)512 (44)38 (38.4)
  Normal weight1880 (36.2)304 (26.1)24 (24.2)
 Waist circumferenceb
   ≥ 102 cm1233 (23.8)435 (37.4)43 (43.4)
   ≥ 94 cm and < 102 cm1385 (26.7)305 (26.2)23 (23.2)
  Adequate2573 (49.6)423 (36.4)33 (33.3)

amean (standard deviation); b n (%)

Characteristics of population regarding self-rated health - ELSA-Brasil baseline (2008–10) amean (standard deviation); b n (%) Tables 2 and 3 show the crude and adjusted ORs (obtained by single and multicovariate models, respectively) treating the socio-occupational class as an effect modifier (adjusted OR). In crude analyses, individuals with overweight, obesity or higher waist circumference were more likely to report worse health than individuals with adequate BMI and WC.
Table 2

Multicovariate ordinal logistic model of the association between waist circumference and self-rated health - ELSA-Brasil (2008–10)

Crude ORAdjusted OR
Female sex
 Self-declared colour (white = 1)
  Brown2.03 (1.78–2.31)1.70 (1.48–1.95)
  Black2.53 (2.19–2.92)1.89 (1.63–2.20)
 Age (continuous variable)1.02 (1.01–1.03)1.02 (1.01–1.03)
 Marital status (single = 1)
  Married/united1.16 (0.97–1.39)1.24 (1.03–1.50)
  Separated/divorced/widowed/other1.59 (1.33–1.92)1.37 (1.13–1.67)
 Waist circumference (adequate = 1)
   ≥ 80 cm and < 88 cm1.59 (1.33–1.91)
   ≥ 88 cm3.31 (2.84–3.88)
 Socio-occupational class (high = 1)
  Medium2.15 (1.84–2.51)
  Low3.89 (3.29–4.60)
 Interactions*
  Adequate WC* high socio-occupational class1
   ≥ 80 cm WC* high socio-occupational class0.95 (0.62–1.46)
   ≥ 88 cm WC* high socio-occupational class2.51 (1.81–3.53)
  Adequate WC* medium socio-occupational class1.68 (1.19–2.39)
   ≥ 80 cm WC* medium socio-occupational class2.62 (1.84–3.80)
   ≥ 88 cm WC* medium socio-occupational class1.86 (1.52–2.29)
  Adequate WC* low socio-occupational class2.77 (1.86–4.16)
   ≥ 80 cm WC* low socio-occupational class4.07 (2.79–6.04)
   ≥ 88 cm WC* low socio-occupational class2.62 (2.10–3.28)
Male sex
 Self-declared colour (white = 1)
  Brown1.53 (1.33–1.75)1.30 (1.12–1.51)
  Black1.81 (1.52–2.15)1.38 (1.14–1.65)
 Age (continuous variable)1.02 (1.02–1.04)1.03 (1.02–1.04)
 Marital status (single = 1)
  Married/united1.46 (1.08–2.01)1.14 (0.83–1.58)
  Separated/divorced/widowed/other1.53 (1.09–2.19)1.31 (0.92–1.89)
 Waist circumference (adequate = 1)
   ≥ 94 cm and < 102 cm1.34 (1.14–1.56)
   ≥ 102 cm2.19 (1.89–2.53)
 Socio-occupational class (high = 1)
  Medium1.76 (1.49–2.07)
  Low2.99 (2.56–3.52)
 Interactions*
  Adequate WC* high socio-occupational class1
   ≥ 94 cm WC* high socio-occupational class1.59 (1.13–2.23)
   ≥ 102 cm WC* high socio-occupational class2.91 (2.15–3.96)
  Adequate WC* medium socio-occupational class2.20 (1.64–2.98)
   ≥ 94 cm WC* medium socio-occupational class1.70 (1.22–2.37)
   ≥ 102 cm WC* medium socio-occupational class1.96 (1.51–2.56)
  Adequate WC* low socio-occupational class3.93 (2.96–5.27)
   ≥ 94 cm WC* low socio-occupational class3.15 (2.30–4.34)
   ≥ 102 cm WC* low socio-occupational class2.22 (1.69–2.94)

OR = Odds Ratio, WC = Waist circumference; Ordinal logistic model was a proportional odds regression to model self-rated health (good, fair, poor). Crude and adjusted ORs were obtained by single and multicovariate models; Adjusted model: waist circumference + socio-occupational class + self-declared colour or race + age + marital status + waist circumference*socio-occupational class; * Effect of socio-occupational class status considering waist circumference

Table 3

Multicovariate ordinal logistic model of the association between body mass index and self-rated health- ELSA-Brasil (2008–10)

Crude ORAdjusted OR
Female sex
 Self-declared colour (white = 1)
  Brown2.03 (1.78–2.31)1.74 (1.51–1.99)
  Black2.53 (2.19–2.92)1.88 (1.61–2.19)
 Age (continuous variable)1.02 (1.01–1.03)1.03 (1.02–1.03)
 Marital status (single = 1)
  Married/united1.16 (0.97–1.39)1.28 (1.06–1.54)
  Separated/divorced/widowed/other1.59 (1.33–1.92)1.41 (1.16–1.71)
 Body mass index (normal = 1)
  Overweigh1.59 (1.33–1.91)
  Obesity3.31 (2.84–3.88)
 Socio-occupational class (high = 1)
  Medium social class2.15 (1.84–2.51)
  Low social class3.89 (3.29–4.60)
 Interactions*
  Normal*high socio-occupational class1
  Overweigh*high socio-occupational class1.01 (0.73–1.40)
  Obesity*high socio-occupational class2.51 (1.81–3.46)
  Normal*medium socio-occupational class1.75 (1.34–2.30)
  Overweigh*medium socio-occupational class2.36 (1.79–3.13)
  Obesity*medium socio-occupational class1.74 (1.32–2.29)
  Normal*low socio-occupational class2.68 (1.97–3.67)
  Overweigh*low socio-occupational class3.47 (2.59–4.69)
  Obesity*low socio-occupational class2.49 (1.86–3.36)
Male sex
 Self-declared colour (white = 1)
  Brown1.53 (1.33–1.75)1.26 (1.09–1.47)
  Black1.81 (1.52–2.15)1.32 (1.09–1.58)
 Age (continuous variable)1.02 (1.02–1.04)1.04 (1.03–1.04)
 Marital status (single = 1)
  Married/united1.46 (1.08–2.01)1.13 (0.83–1.57)
  Separated/divorced/widowed/other1.53 (1.09–2.19)1.29 (0.91–1.86)
 Body mass index (normal = 1)
  Overweigh1.34 (1.14–1.56)
  Obesity2.19 (1.89–2.53)
 Socio-occupational class (high = 1)
  Medium social class1.76 (1.49–2.07)
  Low social class2.99 (2.56–3.52)
 Interactions*
  Normal*high socio-occupational class1
  Overweigh*high socio-occupational class1.72 (1.25–2.41)
  Obesity*high socio-occupational class3.21 (2.26–4.59)
  Normal*medium socio-occupational class2.35 (1.68–3.32)
  Overweigh*medium socio-occupational class1.72 (1.33–2.22)
  Obesity*medium socio-occupational class1.94 (1.43–2.64)
  Normal*low socio-occupational class4.08 (2.95–5.73)
  Overweigh*low socio-occupational class2.89 (2.26–3.70)
  Obesity*low socio-occupational class2.15 (1.57–2.96)

OR = Odds Ratio, BMI = Body mass index; Ordinal logistic model was a proportional odds regression to model self-rated health (good, fair, poor). Crude and adjusted ORs were obtained by single and multicovariate models; Adjusted model: body mass index + socio-occupational class + self-declared colour or race + age + marital status + body mass index*socio-occupational class; * Effect of socio-occupational class status considering body mass index

Multicovariate ordinal logistic model of the association between waist circumference and self-rated health - ELSA-Brasil (2008–10) OR = Odds Ratio, WC = Waist circumference; Ordinal logistic model was a proportional odds regression to model self-rated health (good, fair, poor). Crude and adjusted ORs were obtained by single and multicovariate models; Adjusted model: waist circumference + socio-occupational class + self-declared colour or race + age + marital status + waist circumference*socio-occupational class; * Effect of socio-occupational class status considering waist circumference Multicovariate ordinal logistic model of the association between body mass index and self-rated health- ELSA-Brasil (2008–10) OR = Odds Ratio, BMI = Body mass index; Ordinal logistic model was a proportional odds regression to model self-rated health (good, fair, poor). Crude and adjusted ORs were obtained by single and multicovariate models; Adjusted model: body mass index + socio-occupational class + self-declared colour or race + age + marital status + body mass index*socio-occupational class; * Effect of socio-occupational class status considering body mass index In multicovariate model, the association measurements included the interaction term (BMI or WC*socio-occupational class). It is possible to notice, for both sexes, that interactions terms, for WC and BMI, had similar values and were significant (Tables 2 and 3, respectively). For women, the low and medium socio-occupational class effects were higher for those with WC between 80 and 88 cm (Table 2) or overweight (Table 3). For men, the low and medium socio-occupational class effects were higher for those with adequate WC (Table 3) or normal BMI (Table 2). For example, for women, the effect of the lower socio-occupational class, considering WC between 80 and 88 cm, in worsening self-rated health was 307% (OR = 4.07) higher than those of high socio-occupational class with adequate WC (Table 2). In addition, for men, the effect of the lower socio-occupational class, considering adequate WC, in worsening the self-rated health was 293% (OR = 3.93) higher than those of high socio-occupational class with adequate WC (Table 2). In Figs. 3 and 4, the effects of the BMI and WC and socio-occupational class interactions, based on model 2, are shown. For both sexes, the probability of good self-rated health decrease with the increase of waist circumference, or body mass index, and with the decrease of socio-occupational class. Consequently, with the decrease in good self-rated health, the higher were the probabilities of fair or poor self-rated health.
Fig. 3

Effects of the BMI or WC and socio-occupational class interactions, female sex - ELSA-Brasil (2008–10). Note: WC = Waist circumference. BMI = Body mass index. Adjusted model: waist circumference or body mass index + socio-occupational class + self-declared colour or race + age + marital status + waist circumference or body mass index*socio-occupational class

Fig. 4

Effects of the BMI or WC and socio-occupational class interactions, male sex - ELSA-Brasil (2008–10). Note: WC = Waist circumference. BMI = Body mass index. Adjusted model: waist circumference or body mass index + socio-occupational class + self-declared colour or race + age + marital status + waist circumference or body mass index*socio-occupational class

Effects of the BMI or WC and socio-occupational class interactions, female sex - ELSA-Brasil (2008–10). Note: WC = Waist circumference. BMI = Body mass index. Adjusted model: waist circumference or body mass index + socio-occupational class + self-declared colour or race + age + marital status + waist circumference or body mass index*socio-occupational class Effects of the BMI or WC and socio-occupational class interactions, male sex - ELSA-Brasil (2008–10). Note: WC = Waist circumference. BMI = Body mass index. Adjusted model: waist circumference or body mass index + socio-occupational class + self-declared colour or race + age + marital status + waist circumference or body mass index*socio-occupational class

Discussion

In the analyses, we observed that some characteristics that influence worse self-rated health were similar for men and women, such as BMI and WC, socio-occupational class, self-declared colour or race, and marital status. Others studies conducted on a general population and with a worker population also found similar results [1, 3, 6, 14, 15, 30]. Moreover, in this study, we found that socio-occupational class behaved as an effect modifier of the association between BMI or WC and self-rated health. Our results show the presence of interactions with significant effects for men and women. These results demonstrate that individuals exposed to a low socio-occupational class and inadequate BMI or WC had greater chances of worse self-rated health. There are few studies investigating the presence of an interaction between exposures and self-rated health. Knol et al. [19] conducted a systematic review to examine how interactions were studied and reported results from cohort and case-control studies, including studies from 2001 to 2007. The authors demonstrated the small number of articles with this purpose and reported that the most frequent exposures were treatments, medical conditions, and lifestyle factors, and the most common outcomes were cardiovascular disease, cancer and all causes of mortality. To date, we have not found studies that evaluated an interaction between social class and adiposity measures in the association with self-rated health. However, we found two studies that studied interactions involving socioeconomic factors and other variables, with self-rated health as the main outcome. Both found important results with significant interactions. Ahnquist and collaborators [20] found an interaction between economic capital and social capital when studying poor self-rated health in Sweden. Their results show that individuals exposed to socioeconomic difficulties and low social capital are more likely to self-rate their health as poor. These results corroborate ours, although they do not use the same variable to test the interactions; both the results (by this study and ours) demonstrate the importance of social class and socioeconomic conditions when studying self-rated health. Both studies found interactions with effects involving socioeconomic issues, in which people of a lower social class, and consequently with less education and income, self-evaluate their health worse. In Germany, Trachte et al. [23] studied the presence of an interaction between physical activity and socioeconomic status (measured by education and income) in relation to self-rated health. The authors found, for females, a significant synergistic interaction between education and physical activity. Women with higher levels of education and physical activity rate their own health better. Once more, these studies demonstrate the importance of verifying the influence of issues involving socioeconomic conditions and life habits, such as physical activity, on self-rated health. In this way, in addition to health promotion and nutritional education policies, policies to reduce social inequality and promote social advancement may have an important role in reducing the effect of social class in the association between adiposity measures and self-rated health. One of the limitations of the present study is the cross-sectional design, as the variables used in this study were measured at the same moment in time during the baseline interview. However, the variables selected to compose the proposed DAG are ancestral variables of self-rated health, reinforcing that the sectional design, in this case, was adequate to study interactions that influence fair/poor self-rated health [31]. Another limitation is the generalization of our findings to the non-worker population, as our results are from a cohort of civil servants. Nevertheless, if an interaction between BMI or WC and the socio-occupational class was present in the ELSA population, which includes individuals with employment and income, perhaps this effect is even greater in the general population, which is composed of unemployed individuals with lower levels of education and income. The large number of participants in the ELSA-Brasil study can be cited as an advantage of this study, given the need to have large sample sizes for the study of interactions [32, 33]. Kamangar [33] showed that a study with the aim of detecting interactions would require more than twice as many participants when compared to a study without this objective. Therefore, ELSA-Brasil had an adequate sample that allowed for the identification of variables that behave as effect modifiers. Another advantage of this study was the use of two anthropometric measurements, BMI and WC. The association of different anthropometric methods assists in the nutritional diagnosis and can reduce the classification error associated with the use of just one anthropometric measurement [27]. Additionally, all equipment used was periodically checked; the scales were calibrated, the measuring tapes evaluated, and all interviewers were periodically recertified [34].

Conclusions

Therefore, the results show that the combined effects of social class and BMI or WC are more important than the independent effects of these factors on self-rated health. Our findings call attention to a more vulnerable population subgroup in relation to worse self-rated health, that is, those with overweight/obesity and low socioeconomic level. Nevertheless, these results can help in the formulation of public policies that involve adiposity measures, social class, social inequality, and other important issues when studying self-rated health.
  27 in total

1.  [How does social position influence self-reported health status? A comparative analysis between 1998 and 2003].

Authors:  Cristina Guimarães Rodrigues; Alexandre Gori Maia
Journal:  Cad Saude Publica       Date:  2010-04       Impact factor: 1.632

2.  Social determinants of health--a question of social or economic capital? Interaction effects of socioeconomic factors on health outcomes.

Authors:  Johanna Ahnquist; Sarah P Wamala; Martin Lindstrom
Journal:  Soc Sci Med       Date:  2012-01-21       Impact factor: 4.634

3.  When one depends on the other: reporting of interaction in case-control and cohort studies.

Authors:  Mirjam J Knol; Matthias Egger; Pippa Scott; Mirjam I Geerlings; Jan P Vandenbroucke
Journal:  Epidemiology       Date:  2009-03       Impact factor: 4.822

4.  [Medical assessments and measurements in ELSA-Brasil].

Authors:  Jose Geraldo Mill; Karina Pinto; Rosane Härter Griep; Alessandra Goulart; Murilo Foppa; Paulo A Lotufo; Marcelo K Maestri; Antonio Luiz Ribeiro; Rodrigo Varejão Andreão; Eduardo Miranda Dantas; Ilka Oliveira; Sandra C Fuchs; Roberto de Sá Cunha; Isabela M Bensenor
Journal:  Rev Saude Publica       Date:  2013-06       Impact factor: 2.106

5.  [Strategies and development of quality assurance and control in the ELSA-Brasil].

Authors:  Maria Inês Schmidt; Rosane Härter Griep; Valéria Maria Passos; Vivian Cristine Luft; Alessandra Carvalho Goulart; Greice Maria de Souza Menezes; Maria del Carmen Bisi Molina; Alvaro Vigo; Maria Angélica Nunes
Journal:  Rev Saude Publica       Date:  2013-06       Impact factor: 2.106

Review 6.  Effect modification in epidemiology and medicine.

Authors:  Farin Kamangar
Journal:  Arch Iran Med       Date:  2012-09       Impact factor: 1.354

7.  Self-rated health and associated factors, Brazil, 2006.

Authors:  Marilisa Berti de Azevedo Barros; Luane Margarete Zanchetta; Erly Catarina de Moura; Deborah Carvalho Malta
Journal:  Rev Saude Publica       Date:  2009-11       Impact factor: 2.106

8.  Self-rated health in different social classes of Slovenian adult population: nationwide cross-sectional study.

Authors:  Jerneja Farkas; Majda Pahor; Lijana Zaletel-Kragelj
Journal:  Int J Public Health       Date:  2009-12-22       Impact factor: 3.380

9.  Social determinants of self-reported health in women and men: understanding the role of gender in population health.

Authors:  Ahmad Reza Hosseinpoor; Jennifer Stewart Williams; Avni Amin; Islene Araujo de Carvalho; John Beard; Ties Boerma; Paul Kowal; Nirmala Naidoo; Somnath Chatterji
Journal:  PLoS One       Date:  2012-04-13       Impact factor: 3.240

10.  Social inequalities in self-rated health by age: cross-sectional study of 22,457 middle-aged men and women.

Authors:  Emily McFadden; Robert Luben; Sheila Bingham; Nicholas Wareham; Ann-Louise Kinmonth; Kay-Tee Khaw
Journal:  BMC Public Health       Date:  2008-07-08       Impact factor: 3.295

View more
  3 in total

1.  Cardiovascular Statistics - Brazil 2021.

Authors:  Gláucia Maria Moraes de Oliveira; Luisa Campos Caldeira Brant; Carisi Anne Polanczyk; Deborah Carvalho Malta; Andreia Biolo; Bruno Ramos Nascimento; Maria de Fatima Marinho de Souza; Andrea Rocha De Lorenzo; Antonio Aurélio de Paiva Fagundes Júnior; Beatriz D Schaan; Fábio Morato de Castilho; Fernando Henpin Yue Cesena; Gabriel Porto Soares; Gesner Francisco Xavier Junior; Jose Augusto Soares Barreto Filho; Luiz Guilherme Passaglia; Marcelo Martins Pinto Filho; M Julia Machline-Carrion; Marcio Sommer Bittencourt; Octavio M Pontes Neto; Paolo Blanco Villela; Renato Azeredo Teixeira; Roney Orismar Sampaio; Thomaz A Gaziano; Pablo Perel; Gregory A Roth; Antonio Luiz Pinho Ribeiro
Journal:  Arq Bras Cardiol       Date:  2022-01       Impact factor: 2.000

2.  Group Nutrition Counseling or Individualized Prescription for Women With Obesity? A Clinical Trial.

Authors:  Marciele Alves Bolognese; Carina Bertoldi Franco; Ariana Ferrari; Rose Mari Bennemann; Solange Munhoz Arroyo Lopes; Sônia Maria Marques Gomes Bertolini; Nelson Nardo Júnior; Braulio Henrique Magnani Branco
Journal:  Front Public Health       Date:  2020-04-30

3.  Effects of Serving as a State Functionary on Self-Rated Health: Empirical Evidence From China.

Authors:  Li He; Zixian Zhang; Jiangyin Wang; Yuting Wang; Tianyang Li; Tianyi Yang; Tianlan Liu; Yuanyang Wu; Shuo Zhang; Siqing Zhang; Hualei Yang; Kun Wang
Journal:  Front Public Health       Date:  2022-04-01
  3 in total

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